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An Improved Algorithm for Quantum Principal Component Analysis

Quantum Physics 2019-04-09 v2

Abstract

Principal component analysis is an important dimension reduction technique in machine learning. In [S. Lloyd, M. Mohseni and P. Rebentrost, Nature Physics 10, 631-633, (2014)], a quantum algorithm to implement principal component analysis on quantum computer was obtained by computing the Hamiltonian simulation of unknown density operators. The complexity is O((logd)t2/ϵ)O((\log d)t^2/\epsilon), where dd is the dimension, tt is the evolution time and ϵ\epsilon is the precision. We improve this result into O((logd)t1+1k/ϵ1k)O((\log d)t^{1+\frac{1}{k}}/\epsilon^{\frac{1}{k}}) for arbitrary constant integer k1k\geq 1. As a result, we show that the Hamiltonian simulation of low-rank dense Hermitian matrices can be implemented in the same time.

Keywords

Cite

@article{arxiv.1903.03999,
  title  = {An Improved Algorithm for Quantum Principal Component Analysis},
  author = {Changpeng Shao},
  journal= {arXiv preprint arXiv:1903.03999},
  year   = {2019}
}

Comments

The result is not true